Mechanistic Data Science for STEM Education and Applications

Wing Kam Liu*, Zhengtao Gan, Mark Fleming

*Corresponding author for this work

Research output: Book/ReportBook

12 Scopus citations

Abstract

This book introduces Mechanistic Data Science (MDS) as a structured methodology for combining data science tools with mathematical scientific principles (i.e., mechanistic principles) to solve intractable problems. Traditional data science methodologies require copious quantities of data to show a reliable pattern, but the amount of required data can be greatly reduced by considering the mathematical science principles. MDS is presented here in six easy-to-follow modules: 1) Multimodal data generation and collection, 2) extraction of mechanistic features, 3) knowledge-driven dimension reduction, 4) reduced order surrogate models, 5) deep learning for regression and classification, and 6) system and design. These data science and mechanistic analysis steps are presented in an intuitive manner that emphasizes practical concepts for solving engineering problems as well as real-life problems. This book is written in a spectral style and is ideal as an entry level textbook for engineering and data science undergraduate and graduate students, practicing scientists and engineers, as well as STEM (Science, Technology, Engineering, Mathematics) high school students and teachers.

Original languageEnglish (US)
PublisherSpringer International Publishing
Number of pages276
ISBN (Electronic)9783030878320
ISBN (Print)9783030878313
DOIs
StatePublished - Jan 1 2022

Keywords

  • Data science
  • Deep learning
  • Machine learning
  • Mathematical science and engineering
  • Mechanistic modeling

ASJC Scopus subject areas

  • General Engineering
  • General Mathematics

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